{"title":"集体系统中的性能分析","authors":"Olivier Simonin, J. Ferber, Vincent Decugis","doi":"10.1109/ICMAS.1998.699290","DOIUrl":null,"url":null,"abstract":"The multi agent approach has been used for several years to study complex systems and to give new techniques of resolution both in artificial life to simulate and to analyse insect societies (E. Bonabean and G. Theraulaz, 1994; J.-L. Deneubourg and S. Goss, 1989; 1991), and in robotics to solve problems such as the collecting or the sorting out of elements in a dynamical environment (R. Brooks, 1986; J.-L. Deneubourg and S. Goss, 1991). The reactive agent architecture is based on a simple process of action-reaction often extended with capabilities of adaptation and learning. However, studies that have been carried out on these systems suffer from a lack of formalism, in particular when performances are evaluated. The experimental approach, based on a direct observation (of real or simulated systems) does not allow for quantitative analysis. Mathematical models have been proposed to analyse the behaviour of action-selection, agent specialization and collective work among insects. But these studies give better results on individual agent behaviour than on global collective performances. The study proposes a method to compute the global performances of collective systems given the behaviour of agents, the environment and the kind of events that can happen. Difficulties lie in the fact that these processes contain a lot of random events. Therefore, the problem consists of modelling the system with the right level of description. Thus we do not study issues that are based on emerging phenomena because, as M. 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引用次数: 4
摘要
多年来,多媒介方法一直用于研究复杂系统,并在人工生命中提供新的分辨率技术,以模拟和分析昆虫群落(E. Bonabean和G. Theraulaz, 1994;J.-L。Deneubourg and S. Goss, 1989;1991),并在机器人技术中解决诸如在动态环境中收集或整理元素等问题(R. Brooks, 1986;J.-L。Deneubourg and S. Goss, 1991)。反应剂体系结构基于一个简单的作用-反应过程,通常扩展了适应和学习能力。然而,对这些系统进行的研究缺乏形式主义,特别是在评价绩效时。基于(对真实或模拟系统)直接观察的实验方法不允许进行定量分析。已经提出了数学模型来分析昆虫之间的行动选择、代理专业化和集体工作行为。但这些研究对个体主体行为的研究结果要优于对全局集体行为的研究结果。该研究提出了一种计算集体系统全局性能的方法,该方法考虑了代理的行为、环境和可能发生的事件类型。困难在于这些过程包含许多随机事件。因此,问题包括用正确的描述级别对系统进行建模。因此,我们不研究基于新兴现象的问题,因为正如M. Mataric(1994)所强调的那样,不测试系统就不可能确定它们。
The multi agent approach has been used for several years to study complex systems and to give new techniques of resolution both in artificial life to simulate and to analyse insect societies (E. Bonabean and G. Theraulaz, 1994; J.-L. Deneubourg and S. Goss, 1989; 1991), and in robotics to solve problems such as the collecting or the sorting out of elements in a dynamical environment (R. Brooks, 1986; J.-L. Deneubourg and S. Goss, 1991). The reactive agent architecture is based on a simple process of action-reaction often extended with capabilities of adaptation and learning. However, studies that have been carried out on these systems suffer from a lack of formalism, in particular when performances are evaluated. The experimental approach, based on a direct observation (of real or simulated systems) does not allow for quantitative analysis. Mathematical models have been proposed to analyse the behaviour of action-selection, agent specialization and collective work among insects. But these studies give better results on individual agent behaviour than on global collective performances. The study proposes a method to compute the global performances of collective systems given the behaviour of agents, the environment and the kind of events that can happen. Difficulties lie in the fact that these processes contain a lot of random events. Therefore, the problem consists of modelling the system with the right level of description. Thus we do not study issues that are based on emerging phenomena because, as M. Mataric (1994) emphasizes, it is impossible to determine them without testing the system.